An Improved Image Registration Method Using E-SIFT Feature Descriptor with Hybrid Optimization Algorithm

被引:0
作者
R. Swathi
Alluri Srinivas
机构
[1] Prasad V. Polturi Siddhartha Institute of Technology,
[2] GIT,undefined
[3] GITAM (Deemed to be University),undefined
来源
Journal of the Indian Society of Remote Sensing | 2020年 / 48卷
关键词
Image registration; Hyperspectral images; E-SIFT features; Weighted average model; Optimization;
D O I
暂无
中图分类号
学科分类号
摘要
Automatic image registration of the satellite images aids in the field of the computer-aided research. In the recent years, image registration is useful in the environment monitoring and the agriculture purpose. In this work, the automatic image registration model has been developed through the novel hybrid optimization algorithm. This work mainly concentrates in image registration of the hyperspectral images arriving from the satellite. The proposed automatic image registration model uses the input image and the reference image for the registration purpose. From both the images, the E-SIFT features are extracted and given to the point matching algorithm for the keypoint detection. Then, the similarity transformation model gets the keypoints and makes the input images to the original position. Here, the weighted average model is developed for the image fusion, and the weight score for the image fusion is selected optimally through the proposed salp swarm-crow search algorithm (SS-CSA). For the experimentation, the proposed scheme uses the standard database having the hyperspectral satellite images. The simulation results reveal that the proposed image registration scheme with the SS-CSA algorithm has progressed better than the existing techniques with 0.711788 and 0.993602 for the RMSE and NCC, respectively.
引用
收藏
页码:215 / 226
页数:11
相关论文
共 81 条
  • [1] Askarzadeh A(2016)A novel metaheuristic method for solving constrained engineering optimization problems: Crow search algorithm Computers & Structures 169 1-12
  • [2] Bozorgi H(2017)Fast uniform content-based satellite image registration using the scale-invariant feature transform descriptor Frontiers of Information Technology & Electronic Engineering 18 1108-1116
  • [3] Jafari A(2016)Improved SIFT image registration algorithm on characteristic statistical distributions and consistency constraint Optik-International Journal for Light Electron Optics 127 900-911
  • [4] Chen Y(2003)A new point matching algorithm for non-rigid registration Computer Vision and Image Understanding 89 114-141
  • [5] Shang L(2012)An entropy-based image registration method using image intensity difference on overlapped region Machine Vision and Applications 23 791-804
  • [6] Chui H(2016)Automated co-registration of satellite images through luminance transformation The Photogrammetric Record 31 407-427
  • [7] Rangarajan A(2016)Scalable high-performance image registration framework by unsupervised deep feature representations learning IEEE Trans Biomedical Engineering 63 1505-1516
  • [8] Fan S-KS(2008)Wavelet-based image registration technique for high-resolution remote sensing images Computers & Geosciences 34 1708-1720
  • [9] Chuang Y-C(2017)An adaptive image registration method based on SIFT features and RANSAC transform Computers & Electrical Engineering 62 524-537
  • [10] Gercek D(2018)Robust point correspondence with gabor scale-invariant feature transform for optical satellite image registration Journal of the Indian Society of Remote Sensing 46 395-406